Optimizing efficiency in the creation of patient-specific plates through field-driven generative design in maxillofacial surgery.
Publication year
2023Source
Scientific Reports, 13, 1, (2023), pp. 12082, article 12082ISSN
Publication type
Article / Letter to editor
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Organization
Oral and Maxillofacial Surgery
Journal title
Scientific Reports
Volume
vol. 13
Issue
iss. 1
Page start
p. 12082
Subject
Radboudumc 10: Reconstructive and regenerative medicine Oral and Maxillofacial Surgery; Radboud University Medical CenterAbstract
Field driven design is a novel approach that allows to define through equations geometrical entities known as implicit bodies. This technology does not rely upon conventional geometry subunits, such as polygons or edges, rather it represents spatial shapes through mathematical functions within a geometrical field. The advantages in terms of computational speed and automation are conspicuous, and well acknowledged in engineering, especially for lattice structures. Moreover, field-driven design amplifies the possibilities for generative design, facilitating the creation of shapes generated by the software on the basis of user-defined constraints. Given such potential, this paper suggests the possibility to use the software nTopology, which is currently the only software for field-driven generative design, in the context of patient-specific implant creation for maxillofacial surgery. Clinical scenarios of applicability, including trauma and orthognathic surgery, are discussed, as well as the integration of this new technology with current workflows of virtual surgical planning. This paper represents the first application of field-driven design in maxillofacial surgery and, although its results are very preliminary as it is limited in considering only the distance field elaborated from specific points of reconstructed anatomy, it introduces the importance of this new technology for the future of personalized implant design in surgery.
This item appears in the following Collection(s)
- Academic publications [246325]
- Electronic publications [133937]
- Faculty of Medical Sciences [93294]
- Open Access publications [107422]
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